The Potential of Wrist-Worn Wearables for Driver Drowsiness Detection: A Feasibility Analysis

Thomas Kundinger, A. Riener
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引用次数: 7

Abstract

Drowsiness is a major cause of fatal traffic accidents. Automated driving is intended to counteract this problem, but in the lower levels of automation, the driver is still responsible as a fallback. Current drowsiness detection methods are often based on driving behavior parameters. Since the automation of the driving task reduces the scope of use of these parameters, alternatives are necessary. Particularly methods that include physiological signals seem to be auspicious. However, inside a vehicle, only non- or minimally intrusive measurement techniques are allowed. In this work, a machine learning-based driver drowsiness detection method is presented applied solely to physiological data from non-intrusive wrist-worn smart wearable devices. A user study (N=30) on a test track with SAE level-2 automated driving was conducted where heart rate data with three commercially available fitness trackers were recorded. Different machine learning models were tested in a 2- and 3-level classification of drowsiness. For both cases and with all tested devices, high accuracies (>90%) could be achieved. The proposed methodology provides new options for the development of intelligent driver-vehicle interaction concepts and interfaces, especially for driver drowsiness detection on the way to fully automating the driving task.
腕戴式可穿戴设备在驾驶员困倦检测中的潜力:可行性分析
困倦是致命交通事故的一个主要原因。自动驾驶旨在解决这一问题,但在较低水平的自动化中,驾驶员仍然要承担后备责任。目前的睡意检测方法通常是基于驾驶行为参数。由于驾驶任务的自动化减少了这些参数的使用范围,因此替代方案是必要的。特别是包含生理信号的方法似乎是吉祥的。然而,在车辆内部,只允许使用非侵入性或最小侵入性的测量技术。在这项工作中,提出了一种基于机器学习的驾驶员困倦检测方法,该方法仅适用于来自非侵入式腕戴智能可穿戴设备的生理数据。在SAE 2级自动驾驶测试轨道上进行了一项用户研究(N=30),记录了三个市售健身追踪器的心率数据。不同的机器学习模型在2级和3级的困倦分类中进行了测试。对于这两种情况和所有测试设备,可以实现高精度(bbb90 %)。提出的方法为智能人车交互概念和接口的发展提供了新的选择,特别是在实现完全自动化驾驶任务的过程中进行驾驶员困倦检测。
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